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Intelligent prognostics of machinery health utilising suspended condition monitoring data

机译:利用悬浮状态监测数据对机械健康进行智能预测

摘要

The ability to forecast machinery failure is vital to reducing maintenance costs, operation downtime and safety hazards. Recent advances in condition monitoring technologies have given rise to a number of prognostic models for forecasting machinery health based on condition data. Although these models have aided the advancement of the discipline, they have made only a limited contribution to developing an effective machinery health prognostic system. The literature review indicates that there is not yet a prognostic model that directly models and fully utilises suspended condition histories (which are very common in practice since organisations rarely allow their assets to run to failure); that effectively integrates population characteristics into prognostics for longer-range prediction in a probabilistic sense; which deduces the non-linear relationship between measured condition data and actual asset health; and which involves minimal assumptions and requirements. This work presents a novel approach to addressing the above-mentioned challenges. The proposed model consists of a feed-forward neural network, the training targets of which are asset survival probabilities estimated using a variation of the Kaplan-Meier estimator and a degradation-based failure probability density estimator. The adapted Kaplan-Meier estimator is able to model the actual survival status of individual failed units and estimate the survival probability of individual suspended units. The degradation-based failure probability density estimator, on the other hand, extracts population characteristics and computes conditional reliability from available condition histories instead of from reliability data. The estimated survival probability and the relevant condition histories are respectively presented as “training target” and “training input” to the neural network. The trained network is capable of estimating the future survival curve of a unit when a series of condition indices are inputted. Although the concept proposed may be applied to the prognosis of various machine components, rolling element bearings were chosen as the research object because rolling element bearing failure is one of the foremost causes of machinery breakdowns. Computer simulated and industry case study data were used to compare the prognostic performance of the proposed model and four control models, namely: two feed-forward neural networks with the same training function and structure as the proposed model, but neglected suspended histories; a time series prediction recurrent neural network; and a traditional Weibull distribution model. The results support the assertion that the proposed model performs better than the other four models and that it produces adaptive prediction outputs with useful representation of survival probabilities. This work presents a compelling concept for non-parametric data-driven prognosis, and for utilising available asset condition information more fully and accurately. It demonstrates that machinery health can indeed be forecasted. The proposed prognostic technique, together with ongoing advances in sensors and data-fusion techniques, and increasingly comprehensive databases of asset condition data, holds the promise for increased asset availability, maintenance cost effectiveness, operational safety and – ultimately – organisation competitiveness.
机译:预测机械故障的能力对于降低维护成本,减少运营停机时间和安全隐患至关重要。状态监视技术的最新进展已经产生了许多用于基于状态数据预测机器健康的预测模型。尽管这些模型有助于该学科的发展,但它们对开发有效的机械健康预测系统仅做出了有限的贡献。文献综述表明,尚无直接建立和充分利用悬浮状态历史的预测模型(在实践中,由于组织很少允许其资产流失,这在实践中非常普遍)。有效地将人口特征整合到预测中,以概率的方式进行长期预测;推论出测量条件数据与实际资产健康状况之间的非线性关系;并且只涉及最低限度的假设和要求。这项工作提出了一种应对上述挑战的新颖方法。所提出的模型由前馈神经网络组成,其训练目标是使用Kaplan-Meier估计器和基于退化的故障概率密度估计器的变体估计的资产生存概率。改编后的Kaplan-Meier估计器能够对单个故障单元的实际生存状态进行建模,并估计单个悬浮单元的生存概率。另一方面,基于退化的故障概率密度估计器将提取总体特征,并根据可用的条件历史(而非可靠性数据)计算条件可靠性。估计的生存概率和相关条件历史分别表示为神经网络的“训练目标”和“训练输入”。当输入一系列条件指标时,训练有素的网络能够估算单元的未来生存曲线。尽管所提出的概念可以应用于各种机器部件的预后,但滚动轴承被选为研究对象,因为滚动轴承故障是机械故障的最主要原因之一。使用计算机仿真数据和行业案例研究数据比较了所提出的模型和四种控制模型的预后性能,即:两个前馈神经网络,其训练功能和结构与所提出的模型相同,但忽略了悬浮的历史;时间序列预测递归神经网络;和传统的威布尔分布模型。结果支持这样一种说法,即所提出的模型比其他四个模型表现更好,并且它会产生具有生存概率有用表示的自适应预测输出。这项工作提出了一个令人信服的概念,用于非参数数据驱动的预测,以及更充分,准确地利用可用资产状况信息。它表明确实可以预测机械健康状况。所提出的预后技术,以及传感器和数据融合技术的不断发展,以及资产状况数据的日益完善的数据库,都有望提高资产可用性,维护成本效益,运营安全性以及最终提高组织的竞争力。

著录项

  • 作者

    Heng Aiwina Soong Yin;

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  • 年度 2009
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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